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Graph Neural Network-Based Short‑Term Load Forecasting with Temporal Convolution.

Authors :
Sun, Chenchen
Ning, Yan
Shen, Derong
Nie, Tiezheng
Source :
Data Science & Engineering; Jun2024, Vol. 9 Issue 2, p113-132, 20p
Publication Year :
2024

Abstract

An accurate short-term load forecasting plays an important role in modern power system's operation and economic development. However, short-term load forecasting is affected by multiple factors, and due to the complexity of the relationships between factors, the graph structure in this task is unknown. On the other hand, existing methods do not fully aggregating data information through the inherent relationships between various factors. In this paper, we propose a short-term load forecasting framework based on graph neural networks and dilated 1D-CNN, called GLFN-TC. GLFN-TC uses the graph learning module to automatically learn the relationships between variables to solve problem with unknown graph structure. GLFN-TC effectively handles temporal and spatial dependencies through two modules. In temporal convolution module, GLFN-TC uses dilated 1D-CNN to extract temporal dependencies from historical data of each node. In densely connected residual convolution module, in order to ensure that data information is not lost, GLFN-TC uses the graph convolution of densely connected residual to make full use of the data information of each graph convolution layer. Finally, the predicted values are obtained through the load forecasting module. We conducted five studies to verify the outperformance of GLFN-TC. In short-term load forecasting, using MSE as an example, the experimental results of GLFN-TC decreased by 0.0396, 0.0137, 0.0358, 0.0213 and 0.0337 compared to the optimal baseline method on ISO-NE, AT, AP, SH and NCENT datasets, respectively. Results show that GLFN-TC can achieve higher prediction accuracy than the existing common methods. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
23641185
Volume :
9
Issue :
2
Database :
Complementary Index
Journal :
Data Science & Engineering
Publication Type :
Academic Journal
Accession number :
177817340
Full Text :
https://doi.org/10.1007/s41019-023-00233-8